Abstract
As formal causal inference begins to play a greater role in disciplines that intersect with pharmacometrics, such as biostatistics, epidemiology, and artificial intelligence/machine learning, pharmacometricians may increasingly benefit from a basic fluency in foundational causal inference concepts. This tutorial seeks to orient pharmacometricians to three such fundamental concepts: potential outcomes, g-formula, and directed acyclic graphs (DAGs).
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CITATION STYLE
Rogers, J. A., Maas, H., & Pitarch, A. P. (2023). An introduction to causal inference for pharmacometricians. CPT: Pharmacometrics and Systems Pharmacology, 12(1), 27–40. https://doi.org/10.1002/psp4.12894
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